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动态治疗方案的比较效果:参数g公式的应用

Comparative effectiveness of dynamic treatment regimes: an application of the parametric g-formula.

作者信息

Young Jessica G, Cain Lauren E, Robins James M, O'Reilly Eilis J, Hernán Miguel A

出版信息

Stat Biosci. 2011 Sep 1;3(1):119-143. doi: 10.1007/s12561-011-9040-7.

Abstract

Ideally, randomized trials would be used to compare the long-term effectiveness of dynamic treatment regimes on clinically relevant outcomes. However, because randomized trials are not always feasible or timely, we often must rely on observational data to compare dynamic treatment regimes. An example of a dynamic treatment regime is "start combined antiretroviral therapy (cART) within 6 months of CD4 cell count first dropping below cells/mm or diagnosis of an AIDS-defining illness, whichever happens first" where can take values between 200 and 500. Recently, Cain et al (2011) used inverse probability (IP) weighting of dynamic marginal structural models to find the that minimizes 5-year mortality risk under similar dynamic regimes using observational data. Unlike standard methods, IP weighting can appropriately adjust for measured time-varying confounders (e.g., CD4 cell count, viral load) that are affected by prior treatment. Here we describe an alternative method to IP weighting for comparing the effectiveness of dynamic cART regimes: the parametric g-formula. The parametric g-formula naturally handles dynamic regimes and, like IP weighting, can appropriately adjust for measured time-varying confounders. However, estimators based on the parametric g-formula are more efficient than IP weighted estimators. This is often at the expense of more parametric assumptions. Here we describe how to use the parametric g-formula to estimate risk by the end of a user-specified follow-up period under dynamic treatment regimes. We describe an application of this method to answer the "when to start" question using data from the HIV-CAUSAL Collaboration.

摘要

理想情况下,随机试验将用于比较动态治疗方案对临床相关结局的长期有效性。然而,由于随机试验并不总是可行或及时的,我们常常必须依靠观察性数据来比较动态治疗方案。动态治疗方案的一个例子是“在CD4细胞计数首次降至低于 个细胞/mm³或诊断出艾滋病定义疾病(以先发生者为准)后的6个月内开始联合抗逆转录病毒疗法(cART)”,其中 可以取200到500之间的值。最近,凯恩等人(2011年)使用动态边际结构模型的逆概率(IP)加权法,利用观察性数据,在类似的动态方案下找到使5年死亡风险最小化的 。与标准方法不同,IP加权可以适当地调整受先前治疗影响的测量时变混杂因素(如CD4细胞计数、病毒载量)。在这里,我们描述一种用于比较动态cART方案有效性的IP加权替代方法:参数化g公式。参数化g公式自然地处理动态方案,并且与IP加权一样,可以适当地调整测量时变混杂因素。然而,基于参数化g公式的估计器比IP加权估计器更有效。这通常是以更多的参数假设为代价的。在这里,我们描述如何使用参数化g公式在动态治疗方案下,在用户指定的随访期结束时估计风险。我们描述了该方法在利用HIV-CAUSAL协作的数据回答“何时开始”问题中的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8d94/3769803/528166f0b64f/nihms496106f1.jpg

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